scholarly journals Predicting anticancer hyperfoods with graph convolutional networks

2021 ◽  
Vol 15 (1) ◽  
Author(s):  
Guadalupe Gonzalez ◽  
Shunwang Gong ◽  
Ivan Laponogov ◽  
Michael Bronstein ◽  
Kirill Veselkov

Abstract Background Recent efforts in the field of nutritional science have allowed the discovery of disease-beating molecules within foods based on the commonality of bioactive food molecules to FDA-approved drugs. The pioneering work in this field used an unsupervised network propagation algorithm to learn the systemic-wide effect on the human interactome of 1962 FDA-approved drugs and a supervised algorithm to predict anticancer therapeutics using the learned representations. Then, a set of bioactive molecules within foods was fed into the model, which predicted molecules with cancer-beating potential.The employed methodology consisted of disjoint unsupervised feature generation and classification tasks, which can result in sub-optimal learned drug representations with respect to the classification task. Additionally, due to the disjoint nature of the tasks, the employed approach proved cumbersome to optimize, requiring testing of thousands of hyperparameter combinations and significant computational resources.To overcome the technical limitations highlighted above, we represent each drug as a graph (human interactome) with its targets as binary node features on the graph and formulate the problem as a graph classification task. To solve this task, inspired by the success of graph neural networks in graph classification problems, we use an end-to-end graph neural network model operating directly on the graphs, which learns drug representations to optimize model performance in the prediction of anticancer therapeutics. Results The proposed model outperforms the baseline approach in the anticancer therapeutic prediction task, achieving an F1 score of 67.99%±2.52% and an AUPR of 73.91%±3.49%. It is also shown that the model is able to capture knowledge of biological pathways to predict anticancer molecules based on the molecules’ effects on cancer-related pathways. Conclusions We introduce an end-to-end graph convolutional model to predict cancer-beating molecules within food. The introduced model outperforms the existing baseline approach, and shows interpretability, paving the way to the future of a personalized nutritional science approach allowing the development of nutrition strategies for cancer prevention and/or therapeutics.

2020 ◽  
Author(s):  
Qingxin Yao ◽  
Shuo Gao ◽  
Chengling Wu ◽  
Ting Lin ◽  
Yuan Gao

Multidrug resistance (MDR) often leads to the failure of the anticancer treatment. Besides the blockage of those MDR pathways, the development of more potent drugs are of urgent needs but largely postponed due to imbalance between safety and efficacy. The prodrug strategy, especially with bioorthogonal activation has shown immerse potential to <a>balance safety and efficacy</a>, while recent studies focus on few drug entities such as doxorubicin and MMAE, leaving the vast collection of toxins undetermined. Here we <a>have enumerate</a>d typical molecular entities ranging from FDA approved drugs (doxorubicin, paclitaxel) to a heated ADC warhead (MMAF-OMe) and a <a>trichothecene</a> toxin (Mytoxin A) to demonstrate that the <i>trans</i>-cyclooctene (TCO) caging may serve as a general prodrug design to increase the therapeutic index for bioactive molecules. These prodrugs can be efficiently activated on-demand by the bioorthogonal activators whose distribution is regulated by the cell specific enzymatic non-covalent synthesis of supramolecular self-assemblies. These cell-specific prodrugs activation could not only reduce the toxicology of drugs but also enhance the synergistic therapeutic effect within a broad range of dose ratio. More importantly, these prodrugs activation share the same activator bearing assemblies, which allows the flexible shift of drug identities to successfully combat MDR cancer <i>in vivo</i>. In general, this versatile bioorthogonal prodrug activation platform is readily applicable to enlarge the therapeutic window for various bioactive molecules. We envision that the spatiotemporal controlled prodrug activation should facilitate the drug discovery and development.<br>


Biomolecules ◽  
2020 ◽  
Vol 10 (5) ◽  
pp. 667 ◽  
Author(s):  
Monica M. Arroyo ◽  
Alberto Berral-González ◽  
Santiago Bueno-Fortes ◽  
Diego Alonso-López ◽  
Javier De Las Rivas

Cancer is a complex disease affecting millions of people worldwide, with over a hundred clinically approved drugs available. In order to improve therapy, treatment, and response, it is essential to draw better maps of the targets of cancer drugs and possible side interactors. This study presents a large-scale screening method to find associations of cancer drugs with human genes. The analysis is focused on the current collection of Food and Drug Administration (FDA)-approved drugs (which includes about one hundred chemicals). The approach integrates global gene-expression transcriptomic profiles with drug-activity profiles of a set of 60 human cell lines obtained for a collection of chemical compounds (small bioactive molecules). Using a standardized expression for each gene versus standardized activity for each drug, Pearson and Spearman correlations were calculated for all possible pairwise gene-drug combinations. These correlations were used to build a global bipartite network that includes 1007 gene-drug significant associations. The data are integrated into an open web-tool called GEDA (Gene Expression and Drug Activity) which includes a relational view of cancer drugs and genes, disclosing the putative indirect interactions found for FDA-approved drugs as well as the known targets of these drugs. The results also provide insight into the complex action of pharmaceuticals, presenting an alternative view to address predicted pleiotropic effects of the drugs.


2020 ◽  
Author(s):  
Qingxin Yao ◽  
Shuo Gao ◽  
Chengling Wu ◽  
Ting Lin ◽  
Yuan Gao

Multidrug resistance (MDR) often leads to the failure of the anticancer treatment. Besides the blockage of those MDR pathways, the development of more potent drugs are of urgent needs but largely postponed due to imbalance between safety and efficacy. The prodrug strategy, especially with bioorthogonal activation has shown immerse potential to <a>balance safety and efficacy</a>, while recent studies focus on few drug entities such as doxorubicin and MMAE, leaving the vast collection of toxins undetermined. Here we <a>have enumerate</a>d typical molecular entities ranging from FDA approved drugs (doxorubicin, paclitaxel) to a heated ADC warhead (MMAF-OMe) and a <a>trichothecene</a> toxin (Mytoxin A) to demonstrate that the <i>trans</i>-cyclooctene (TCO) caging may serve as a general prodrug design to increase the therapeutic index for bioactive molecules. These prodrugs can be efficiently activated on-demand by the bioorthogonal activators whose distribution is regulated by the cell specific enzymatic non-covalent synthesis of supramolecular self-assemblies. These cell-specific prodrugs activation could not only reduce the toxicology of drugs but also enhance the synergistic therapeutic effect within a broad range of dose ratio. More importantly, these prodrugs activation share the same activator bearing assemblies, which allows the flexible shift of drug identities to successfully combat MDR cancer <i>in vivo</i>. In general, this versatile bioorthogonal prodrug activation platform is readily applicable to enlarge the therapeutic window for various bioactive molecules. We envision that the spatiotemporal controlled prodrug activation should facilitate the drug discovery and development.<br>


Planta Medica ◽  
2013 ◽  
Vol 79 (10) ◽  
Author(s):  
H Houson ◽  
J Schlesser ◽  
J Beverage ◽  
V Macherla ◽  
E Esquenazi

2020 ◽  
Vol 27 ◽  
Author(s):  
Firoz Anwar ◽  
Salma Naqvi ◽  
Fahad A. Al-Abbasi ◽  
Nauroz Neelofar ◽  
Vikas Kumar ◽  
...  

: The last couple of months have witnessed the world in a state of virtual standstill. The SARS-CoV-2 virus has overtaken globe to economic and social lockdown. Many patients with COVID-19 have compromised immunity, especially in an aged population suffering from Parkinson disease (PD). Alteration in dopaminergic neurons or deficiency of dopamine in PD patients is the most common symptoms affecting 1% population above the age of 60 years. The compromised immune system and inflammatory manifestation in PD patients make them an easy target. The most common under trial drugs for COVID-19 are Remdesivir, Favipiravir, Chloroquine and Hydroxychloroquine, Azithromycin along with adjunct drugs like Amantadine with some monoclonal antibodies. : Presently, clinically US FDA approved drugs in PD includes Levodopa, catechol-O-methyl transferase (COMT) inhibitors, (Entacapone and Tolcapone), Dopamine agonists (Bromocriptine, Ropinirole, Pramipexole, and Rotigotine), Monoamine oxidase B (MAO-B) inhibitors (Selegiline and Rasagiline), Amantadine and Antimuscarinic drugs. The drugs have established mechanism of action on PD patients with known pharmacodynamics and pharmacokinetic properties along with dose and adverse effects. : Conclusion and relevance of this review focus on the drugs that can be tried for the PD patients with SAR CoV-2 infection, in particular, Amantadine approved by all developed countries a common drug possessing both antiviral properties by downregulation of CTSL, lysosomal pathway disturbance and change in pH necessary to uncoat the viral proteins and antiParkinson properties. The significant prognostic adverse effect of SARS-CoV-2 on PD and the present-day treatment options, clinical presentation and various mechanism is warrant need of the hour.


2018 ◽  
Vol 15 (2) ◽  
pp. 208-220 ◽  
Author(s):  
Vaibhav Mishra ◽  
Tejpal Singh Chundawat

Background: Substituted piperazine heterocycles are among the most significant structural components of pharmaceuticals. N1/N4 substituted piperazine containing drugs and biological targets are ranked 3rd in the top most frequent nitrogen heterocycles in U.S. FDA approved drugs. The high demand of N1/N4 substituted piperazine containing biologically active compounds and U.S. FDA approved drugs, has prompted the development of Pd catalyzed C-N bond formation reactions for their synthesis. Buchwald-Hartwig reaction is the key tool for the synthesis of these compounds. Objective: This review provides strategies for Pd catalyzed C-N bond formation at N1/N4 of piperazine in the synthesis of drugs and biological targets with diverse use of catalyst-ligand system and reaction parameters. Conclusion: It is clear from the review that a vast amount of work has been done in the synthesis of N1/N4 substituted piperazine containing targets under the Pd catalyzed Buchwald-Hartwig amination of aryl halides by using different catalyst-ligand systems. These methods have become increasingly versatile as a result of innovation in catalyst design and improvements in reaction conditions. This review gives an overview of recent utilization of Buchwald-Hartwig amination reaction in drug/target synthesis.


2018 ◽  
Vol 14 (2) ◽  
pp. 106-116 ◽  
Author(s):  
Olujide O. Olubiyi ◽  
Maryam O. Olagunju ◽  
James O. Oni ◽  
Abidemi O. Olubiyi

2021 ◽  
Vol 4 (1) ◽  
Author(s):  
Vicky Mody ◽  
Joanna Ho ◽  
Savannah Wills ◽  
Ahmed Mawri ◽  
Latasha Lawson ◽  
...  

AbstractEmerging outbreak of severe acute respiratory syndrome coronavirus-2 (SARS-CoV-2) infection is a major threat to public health. The morbidity is increasing due to lack of SARS-CoV-2 specific drugs. Herein, we have identified potential drugs that target the 3-chymotrypsin like protease (3CLpro), the main protease that is pivotal for the replication of SARS-CoV-2. Computational molecular modeling was used to screen 3987 FDA approved drugs, and 47 drugs were selected to study their inhibitory effects on SARS-CoV-2 specific 3CLpro enzyme in vitro. Our results indicate that boceprevir, ombitasvir, paritaprevir, tipranavir, ivermectin, and micafungin exhibited inhibitory effect towards 3CLpro enzymatic activity. The 100 ns molecular dynamics simulation studies showed that ivermectin may require homodimeric form of 3CLpro enzyme for its inhibitory activity. In summary, these molecules could be useful to develop highly specific therapeutically viable drugs to inhibit the SARS-CoV-2 replication either alone or in combination with drugs specific for other SARS-CoV-2 viral targets.


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